123

The data I have to work with is a bit messy.. It has header names inside of its data. How can I choose a row from an existing pandas dataframe and make it (rename it to) a column header?

I want to do something like:

header = df[df['old_header_name1'] == 'new_header_name1']

df.columns = header
223
In [21]: df = pd.DataFrame([(1,2,3), ('foo','bar','baz'), (4,5,6)])

In [22]: df
Out[22]: 
     0    1    2
0    1    2    3
1  foo  bar  baz
2    4    5    6

Set the column labels to equal the values in the 2nd row (index location 1):

In [23]: df.columns = df.iloc[1]

If the index has unique labels, you can drop the 2nd row using:

In [24]: df.drop(df.index[1])
Out[24]: 
1 foo bar baz
0   1   2   3
2   4   5   6

If the index is not unique, you could use:

In [133]: df.iloc[pd.RangeIndex(len(df)).drop(1)]
Out[133]: 
1 foo bar baz
0   1   2   3
2   4   5   6

Using df.drop(df.index[1]) removes all rows with the same label as the second row. Because non-unique indexes can lead to stumbling blocks (or potential bugs) like this, it's often better to take care that the index is unique (even though Pandas does not require it).

3
  • Thank you so much for your quick response! How can I choose a row by value in stead of index location to make it header? So for your example something like.. df.columns = df[df[0] == 'foo'] – E.K. Oct 1 '14 at 17:57
  • The problem with that is there could be more than one row which has the value "foo". One way around that problem is to explicitly choose the first such row: df.columns = df.iloc[np.where(df[0] == 'foo')[0][0]]. – unutbu Oct 1 '14 at 18:02
  • Ah I see why you did that way. For my case, I know there is only one row that has the value "foo". So it is ok. I just did this way I guess it is the same as the one you gave me above. idx_loc = df[df[0] == 'foo'].index.tolist()[0] df.columns = df.iloc[idx_loc] – E.K. Oct 1 '14 at 18:08
73

This works (pandas v'0.19.2'):

df.rename(columns=df.iloc[0])
2
  • 28
    You can remove the "header" row by adding .drop(df.index[0]) – ostrokach Nov 23 '17 at 22:01
  • I like this better than the actual accepted answer. I love the short oneline solutions. – Javier Jan 23 '19 at 16:09
21

It would be easier to recreate the data frame. This would also interpret the columns types from scratch.

headers = df.iloc[0]
new_df  = pd.DataFrame(df.values[1:], columns=headers)
1
  • 1
    Simple and easy. Nice! – Desmond Feb 5 at 6:10
4

You can specify the row index in the read_csv or read_html constructors via the header parameter which represents Row number(s) to use as the column names, and the start of the data. This has the advantage of automatically dropping all the preceding rows which supposedly are junk.

import pandas as pd
from io import StringIO

In[1]
    csv = '''junk1, junk2, junk3, junk4, junk5
    junk1, junk2, junk3, junk4, junk5
    pears, apples, lemons, plums, other
    40, 50, 61, 72, 85
    '''

    df = pd.read_csv(StringIO(csv), header=2)
    print(df)

Out[1]
       pears   apples   lemons   plums   other
    0     40       50       61      72      85
2

To rename the header without reassign df:

df.rename(columns=df.iloc[0], inplace = True)

To drop the row without reassign df:

df.drop(df.index[0], inplace = True)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.